Data Equity: Foundational Concepts for Generative AI

Autor: Stonier, JoAnn, Woodman, Lauren, Alshammari, Majed, Cummings, Renée, Dad, Nighat, Garg, Arti, Busetto, Alberto Giovanni, Hsiao, Katherine, Hudson, Maui, Singh, Parminder Jeet, Kanamugire, David, Kapoor, Astha, Lei, Zheng, Lu, Jacqueline, Mizouni, Emna, Lungati, Angela Oduor, Loebel, María Paz Canales, Sethumadhavan, Arathi, Telford, Sarah, Sarin, Supheakmungkol, Bettinger, Kimmy, Teeuwen, Stephanie
Rok vydání: 2023
Předmět:
Zdroj: World Economic Forum 2023
Druh dokumentu: Working Paper
Popis: This briefing paper focuses on data equity within foundation models, both in terms of the impact of Generative AI (genAI) on society and on the further development of genAI tools. GenAI promises immense potential to drive digital and social innovation, such as improving efficiency, enhancing creativity and augmenting existing data. GenAI has the potential to democratize access and usage of technologies. However, left unchecked, it could deepen inequities. With the advent of genAI significantly increasing the rate at which AI is deployed and developed, exploring frameworks for data equity is more urgent than ever. The goals of the briefing paper are threefold: to establish a shared vocabulary to facilitate collaboration and dialogue; to scope initial concerns to establish a framework for inquiry on which stakeholders can focus; and to shape future development of promising technologies. The paper represents a first step in exploring and promoting data equity in the context of genAI. The proposed definitions, framework and recommendations are intended to proactively shape the development of promising genAI technologies.
Databáze: arXiv